yes Pittsburgh,no Pittsburgh wins by over 1.5 runs,yes Over 5.5 runs scored

% Consensus YES
Platforms 1
Total Volume $0
Cross-platform spread
Resolves 2026-04-13
Platform Yes No Volume Last seen Link
Kalshi 15:56 UTC View →
Kalshi 11:31 UTC View →
Kalshi 20:00 UTC View →
Kalshi 18:21 UTC View →
Kalshi 20:49 UTC View →
Kalshi 11:53 UTC View →
Kalshi 15:31 UTC View →
Kalshi 08:21 UTC View →
Kalshi 05:31 UTC View →
Kalshi 08:21 UTC View →
Kalshi 11:13 UTC View →
Kalshi 19:13 UTC View →
Kalshi 18:35 UTC View →
Kalshi 05:28 UTC View →
Kalshi 21:02 UTC View →
Kalshi 20:55 UTC View →
Kalshi 20:16 UTC View →
Kalshi 20:10 UTC View →
Kalshi 20:51 UTC View →
Kalshi 21:02 UTC View →
Kalshi 20:53 UTC View →
Kalshi 20:13 UTC View →
Kalshi 20:37 UTC View →
Kalshi 12:03 UTC View →
Kalshi 12:02 UTC View →
Kalshi 16:21 UTC View →
Kalshi 20:15 UTC View →
Kalshi 20:18 UTC View →
Kalshi 07:19 UTC View →
Kalshi 18:48 UTC View →
Kalshi 20:55 UTC View →
Kalshi 07:32 UTC View →
Kalshi 11:53 UTC View →
Kalshi 18:29 UTC View →
Kalshi 08:24 UTC View →
No history yet — first few snapshots pending.
Probability history, most recent 30 days

What do these odds mean?

Cross-platform data for yes Pittsburgh,no Pittsburgh wins by over 1.5 runs,yes Over 5.5 runs scored is still being collected.

How to read cross-platform spreads

When two platforms price the same event meaningfully differently, it usually means one of three things: liquidity is thin on one side, fee structures are pushing a spread, or traders on one platform have information the other lacks. Spreads larger than 5 percentage points on events with over $50K in volume often resolve toward the higher-volume platform's price.

About this data

Beeks.ai aggregates prediction market data from Polymarket, Kalshi, and Manifold. Updates run every minute. Consensus probability is a volume-weighted average across all matched markets. Historical snapshots are stored for calibration analysis.

Last updated: 2026-04-10 21:02:39 UTC · Download JSON

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